Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group

Computational multi-wavelength phase synthesis using convolutional neural networks [Invited]

Not Accessible

Your library or personal account may give you access

Abstract

Multi-wavelength digital holographic microscopy (MWDHM) provides indirect measurements of the refractive index for non-dispersive samples. Successive-shot MWDHM is not appropriate for dynamic samples and single-shot MWDHM significantly increases the complexity of the optical setup due to the need for multiple lasers or a wavelength tunable source. Here we consider deep learning convolutional neural networks for computational phase synthesis to obtain high-speed simultaneous phase estimates on different wavelengths and thus single-shot estimates of the integral refractive index without increased experimental complexity. This novel, to the best of our knowledge, computational concept is validated using cell phantoms consisting of internal refractive index variations representing cytoplasm and membrane-bound organelles, respectively, and a simulation of a realistic holographic recording process. Specifically, in this work we employed data-driven computational techniques to perform accurate dual-wavelength hologram synthesis (hologram-to-hologram prediction), dual-wavelength phase synthesis (unwrapped phase-to-phase prediction), direct phase-to-index prediction using a single wavelength, hologram-to-phase prediction, and 2D phase unwrapping with sharp discontinuities (wrapped-to-unwrapped phase prediction).

© 2021 Optical Society of America

Full Article  |  PDF Article
More Like This
Accurate and practical feature extraction from noisy holograms

Siddharth Rawat and Anna Wang
Appl. Opt. 60(16) 4639-4646 (2021)

Automated phase unwrapping in digital holography with deep learning

Seonghwan Park, Youhyun Kim, and Inkyu Moon
Biomed. Opt. Express 12(11) 7064-7081 (2021)

One step accurate phase demodulation from a closed fringe pattern with the convolutional neural network HRUnet

Rongli Guo, Shuaidong Lu, Miaomiao Zhang, Zhaoxin Li, Dangjuan Li, Fan Wang, XiaoYing Hu, and Shenjiang Wu
Appl. Opt. 63(7) B59-B69 (2024)

Data Availability

Python code to perform image-to-image prediction based on cGAN is available in Ref. [64]. The phase, refractive index, and height images discussed in Section 6.A can be found in Ref. [54].

64. B. Bazow, T. Phan, C. B. Raub, and G. Nehmetallah, “Python code to perform image-to-image prediction based on cGAN,” GitHub, accessed 2021, https://github.com/bazowbs1/cgan-mw-decoupling.

54. B. Bazow, T. Phan, C. B. Raub, and G. Nehmetallah, “Phase, refractive index, and height image data,” GitHub, accessed 2021, https://github.com/bazowbs1/cgan-mw-decoupling-data.

Cited By

You do not have subscription access to this journal. Cited by links are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Figures (21)

You do not have subscription access to this journal. Figure files are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Equations (14)

You do not have subscription access to this journal. Equations are available to subscribers only. You may subscribe either as an Optica member, or as an authorized user of your institution.

Contact your librarian or system administrator
or
Login to access Optica Member Subscription

Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All rights reserved, including rights for text and data mining and training of artificial technologies or similar technologies.